14 pages, submitted to MNRAS. Comments most welcomeInternational audienceABSTRACT Image simulations are essential tools for preparing and validating the analysis of current and future wide-field optical surveys. However, the galaxy models used as the basis for these simulations are typically limited to simple parametric light profiles, or use a fairly limited amount of available space-based data. In this work, we propose a methodology based on deep generative models to create complex models of galaxy morphologies that may meet the image simulation needs of upcoming surveys. We address the technical challenges associated with learning this morphology model from noisy and point spread function (PSF)-convolved images by building a hybrid Deep ...
We present the data used in "DeepAdversaries: Examining the Robustness of Deep Learning Models for G...
Modern large-scale cosmological simulations model the universe with increasing sophistication and at...
We present a machine learning framework to simulate realistic galaxies for the Euclid Survey, produc...
We examine the capability of generative models to produce realistic galaxy images. We show that mixi...
We examine the capability of generative models to produce realistic galaxy images. We show that mixi...
Accepted for publication in MNRAS. Comments welcomeInternational audienceABSTRACT Hydrodynamical sim...
International audienceEstablishing accurate morphological measurements of galaxies in a reasonable a...
Accurately reproducing the morphology of galaxies in our Universe is a crucial test for hydrodynamic...
International audienceWe present a machine learning framework to simulate realistic galaxies for the...
We use Bayesian convolutional neural networks and a novel generative model of Galaxy Zoo volunteer r...
We present a machine learning framework to simulate realistic galaxies for the Euclid Survey, produc...
International audienceWe present a machine learning framework to simulate realistic galaxies for the...
We present a machine learning framework to simulate realistic galaxies for the Euclid Survey, produc...
With the advent of future big-data surveys, automated tools for unsupervised discovery are becoming ...
Understanding the nature of dark energy, the mysterious force driving the accelerated expansion of t...
We present the data used in "DeepAdversaries: Examining the Robustness of Deep Learning Models for G...
Modern large-scale cosmological simulations model the universe with increasing sophistication and at...
We present a machine learning framework to simulate realistic galaxies for the Euclid Survey, produc...
We examine the capability of generative models to produce realistic galaxy images. We show that mixi...
We examine the capability of generative models to produce realistic galaxy images. We show that mixi...
Accepted for publication in MNRAS. Comments welcomeInternational audienceABSTRACT Hydrodynamical sim...
International audienceEstablishing accurate morphological measurements of galaxies in a reasonable a...
Accurately reproducing the morphology of galaxies in our Universe is a crucial test for hydrodynamic...
International audienceWe present a machine learning framework to simulate realistic galaxies for the...
We use Bayesian convolutional neural networks and a novel generative model of Galaxy Zoo volunteer r...
We present a machine learning framework to simulate realistic galaxies for the Euclid Survey, produc...
International audienceWe present a machine learning framework to simulate realistic galaxies for the...
We present a machine learning framework to simulate realistic galaxies for the Euclid Survey, produc...
With the advent of future big-data surveys, automated tools for unsupervised discovery are becoming ...
Understanding the nature of dark energy, the mysterious force driving the accelerated expansion of t...
We present the data used in "DeepAdversaries: Examining the Robustness of Deep Learning Models for G...
Modern large-scale cosmological simulations model the universe with increasing sophistication and at...
We present a machine learning framework to simulate realistic galaxies for the Euclid Survey, produc...